Systems and methods for likelihood-based detection of gas leaks using mobile survey equipment
In some embodiments, vehicle-based natural gas leak detection methods are used to generate 2-D spatial distributions (heat maps) of gas emission source probabilities and surveyed area locations using measured gas concentrations and associated geospatial (e.g. GPS) locations, wind direction and wind speed, and atmospheric condition data. Bayesian updates are used to incorporate the results of one or more measurement runs into computed spatial distributions. Operating in gas-emission plume space rather than raw concentration data space allows reducing the computational complexity of updating gas emission source probability heat maps. Gas pipeline location data and other external data may be used to determine the heat map data.
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This application claims the benefit of the filing date of U.S. Provisional Patent Application No. 61/745,562, filed on Dec. 22, 2012, titled “Systems and Methods for Likelihood-Based Detection of Gas Leaks Using Mobile Survey Equipment” which is incorporated herein by reference in its entirety.
BACKGROUNDThe invention relates to systems and methods for performing field inspections of natural gas infrastructure to detect gas leaks such as methane gas leaks, and for maintaining and updating geospatial database information related to natural gas infrastructure.
A common means of distributing energy around the world is by the transmission of gas, usually natural gas. In some areas of the world manufactured gasses are also transmitted for use in homes and factories. Gas is typically transmitted through underground pipelines having branches that extend into homes and other buildings for use in providing energy for space and water heating. Many thousands of miles of gas pipeline exist in virtually every major populated area. Since gas is highly combustible, gas leakage is a serious safety concern. Recently, there have been reports of serious fires or explosions caused by leakage of gas in the United States as the pipeline infrastructure becomes older. For this reason, much effort has been made to provide instrumentation for detecting small amounts of gas so that leaks can be located to permit repairs.
One approach to gas leak detection is to mount a gas leak detection instrument on a moving vehicle, e.g., as considered in U.S. Pat. No. 5,946,095. A natural gas detector apparatus is mounted to the vehicle so that the vehicle transports the detector apparatus over an area of interest at speeds of up to 20 miles per hour. The apparatus is arranged such that natural gas intercepts a beam path and absorbs representative wavelengths of a light beam. A receiver section receives a portion of the light beam onto an electro-optical etalon for detecting the gas.
Although a moving vehicle may cover more ground than a surveyor on foot, there is still the problem of reliably and accurately locating the gas leak source (e.g., a broken pipe) if gas is detected from the vehicle.
SUMMARYAccording to one aspect, a method comprises employing at least one processor to: identify a first gas emission plume event according to a first set of gas emission data resulting from a first mobile measurement run performed by a mobile measurement device along a first measurement path, the first set of gas emission data reflecting a first set of gas concentration data acquired during the first mobile measurement run and a first set of associated atmospheric condition data characterizing the first mobile measurement run; generate a prior 2-D surface map of gas emission source probabilities according to the first set of gas emission data; receive a second set of gas emission data resulting from a second mobile measurement run, the second set of gas emission data reflecting a second set of gas concentration data acquired during the second mobile measurement run; and update the prior 2-D surface map to generate a posterior 2-D surface map of gas emission source probabilities according to the second set of gas emission data, wherein generating the posterior 2-D surface map comprises determining an updated probability of a gas emission source being present at a given location according to a product of a prior probability of the gas emission source being present at the given location and a probability of observing the second set of gas emission data given the gas emission source being present at the given location.
According to another aspect, a non-transitory computer-readable medium encodes instructions which, when executed by a computer system comprising at least one processor, cause the at least one processor to: identify a first gas emission plume event according to a first set of gas emission data resulting from a first mobile measurement run performed by a mobile measurement device along a first measurement path, the first set of gas emission data reflecting a first set of gas concentration data acquired during the first mobile measurement run and a first set of associated atmospheric condition data characterizing the first mobile measurement run; generate a prior 2-D surface map of gas emission source probabilities according to the first set of gas emission data; receive a second set of gas emission data resulting from a second mobile measurement run, the second set of gas emission data reflecting a second set of gas concentration data acquired during the second mobile measurement run; and update the prior 2-D surface map to generate a posterior 2-D surface map of gas emission source probabilities according to the second set of gas emission data, wherein generating the posterior 2-D surface map comprises determining an updated probability of a gas emission source being present at a given location according to a product of a prior probability of the gas emission source being present at the given location and a probability of observing the second set of gas emission data given the gas emission source being present at the given location.
According to another aspect, a computer system comprises at least one processor configured to: identify a first gas emission plume event according to a first set of gas emission data resulting from a first mobile measurement run performed by a mobile measurement device along a first measurement path, the first set of gas emission data reflecting a first set of gas concentration data acquired during the first mobile measurement run and a first set of associated atmospheric condition data characterizing the first mobile measurement run; generate a prior 2-D surface map of gas emission source probabilities according to the first set of gas emission data; receive a second set of gas emission data resulting from a second mobile measurement run, the second set of gas emission data reflecting a second set of gas concentration data acquired during the second mobile measurement run; and update the prior 2-D surface map to generate a posterior 2-D surface map of gas emission source probabilities according to the second set of gas emission data, wherein generating the posterior 2-D surface map comprises determining an updated probability of a gas emission source being present at a given location according to a product of a prior probability of the gas emission source being present at the given location and a probability of observing the second set of gas emission data given the gas emission source being present at the given location.
According to another aspect, a non-transitory computer-readable medium encodes instructions which, when executed by a computer system comprising at least one processor, cause the at least one processor to: receive a prior 2-D surface map of gas emission source probabilities; identify a first gas emission plume event according to a first set of gas emission data resulting from a first mobile measurement run performed by a mobile measurement device along a first measurement path, the first set of gas emission data reflecting a first set of gas concentration data acquired during the first mobile measurement run and a first set of associated atmospheric condition data characterizing the first mobile measurement run; and selectively employ data characterizing the identified first gas emission plume event to update the prior 2-D surface map to generate a posterior 2-D surface map of gas emission source probabilities by determining an updated probability of a gas emission source being present at a given location according to a product of a prior probability of the gas emission source being present at the given location and a probability of observing the data characterizing the identified first gas emission plume event given the gas emission source being present at the given location
The foregoing aspects and advantages of the present invention will become better understood upon reading the following detailed description and upon reference to the drawings where:
Apparatus and methods described herein may include or employ one or more interconnected computer systems such as servers, personal computers and/or mobile communication devices, each comprising one or more processors and associated memory, storage, input and display devices. Such computer systems may run software implementing methods described herein when executed on hardware. In the following description, it is understood that all recited connections between structures can be direct operative connections or indirect operative connections through intermediary structures. A set of elements includes one or more elements. Any recitation of an element is understood to refer to at least one element. A plurality of elements includes at least two elements. Unless otherwise required, any described method steps need not be necessarily performed in a particular illustrated order. A first element (e.g. data) derived from a second element encompasses a first element equal to the second element, as well as a first element generated by processing the second element and optionally other data. Making a determination or decision according to a parameter encompasses making the determination or decision according to the parameter and optionally according to other data. Unless otherwise specified, an indicator of some quantity/data may be the quantity/data itself, or an indicator different from the quantity/data itself. A synthetic representation refers to an icon or other computer-generated representation, and is distinct from a real-time display of an image captured by a device camera. Unless otherwise specified, generating a 2-D map such as a heat map is understood to refer to generating a 2-D spatial distribution of values, for example a 2-D spatial distribution of probabilities that a gas emission source is present at each location along a 2-D surface, and need not include generating a display of the 2-D map. The term “natural gas” is used below to refer broadly to gases that include methane, whether or not such gasses are fossil fuels pumped out of the ground; for example, in the discussion below, sewers and landfills are described for clarity/simplicity as sources of natural gas, even though the gases generated by a landfill may not be chemically identical to gases extracted from fossil fuel geological deposits. The terms “natural gas transmission pipeline” and “natural gas distribution pipeline” are both used broadly to refer to pipelines that carry natural gas. The term “wide area network” refers to a network including at least one router. Computer programs described in some embodiments of the present invention may be stand-alone software entities or sub-entities (e.g., subroutines, code objects) of other computer programs. Computer readable media encompass storage (non-transitory) media such as magnetic, optic, and semiconductor media (e.g. hard drives, optical disks, flash memory, DRAM), as well as communications links such as conductive cables and fiber optic links. According to some embodiments, the present invention provides, inter alia, computer systems programmed to perform the methods described herein, as well as computer-readable media encoding instructions to perform the methods described herein.
Finding and grading leaks in a natural gas distribution system using traditional means is slow and costly. There is increasing interest on the part of gas utilities and public utility commissions to improve means to find natural gas leaks quickly and with high detection efficiency. Furthermore, according to a Federal law passed in 2009, utilities in the United States must put in place processes to quantitatively assess risks to their distribution systems. The results of such assessments may then be used, presumably, to prioritize resources and inform other decisions to ensure public safety.
According to one aspect, when an elevated concentration of methane that is consistent with the signature of a gas plume is detected by a measurement system as described below, software reports the amplitude of the background-subtracted maximum concentration and a range of directions toward the likely source of gas emission. Additionally, the software displays a Field of View swath indicating which areas of the survey region have been covered and which have not. A surveyed area output is suitable for incorporation into a risk model, and has to potential to remove much of the human bias that is currently introduced into such models associated with how leak surveys are currently conducted and how survey coverage is accounted for. Reducing such bias allows improving the accuracy of risk calculations and allows for better-informed decision-making Systems and methods described below allow generating and/or updating 2-D spatial distributions (heat maps) of probabilities that facilitate the detection of natural gas leaks. For example, such spatial distributions may be heat maps of probabilities that a source is present at a given location, and/or probabilities that a source would have been detected had it been present at a given location, during one or more measurement runs.
Exemplary Hardware and Software Environment
Each computer system 18 comprises a plurality of hardware components, schematically illustrated in
Exemplary GUI Design
Peak markers 76 show the locations along the path 74 where peaks in the gas concentration measurements, which satisfy the conditions for being likely gas emission indications, were identified. The colors of the peak markers 76 may be used to distinguish data collected on different runs. The annotations within the peak markers 76 show the peak concentration of methane at the locations of those measurement points (e.g., 3.0, 2.6, and 2.0 parts per million). An isotopic ratio marker 77 may be overlaid on the map 70 to indicate isotopic ratio analysis output and tolerance (e.g., −34.3+/−2.2). Also displayed on the map 70 are search area indicators 78, preferably shown as a sector of a circle having a distinguishing color. Each of the search area indicators 78 indicates a search area suspected to have a gas emission (e.g. leak) source. The opening angle of the search area indicator 78 depicts the variability in the wind direction. The orientation of the axis of the search area indicator 78 (preferably an axis of symmetry) indicates the likely direction to the potential gas leak source. Also displayed on the map 70 are one or more surveyed area indicators 80 (shown as hatched regions in
Referring still to
Exemplary Gas Emission Data Collection and Analysis
Referring again to
Whether or not a potential gas emission source of a given strength is detectable by a gas measurement device of a given sensitivity depends on the separation distance of the source from the gas measurement device and on whether the wind is sufficient to transport gas from the gas emission source to the gas measurement device at some point along the path 74. In some embodiments, a physical model is employed that relates the measured gas concentration peak at the location of the vehicle 24 (in ppm, for example) to the emission rate of the potential gas emission source (in g/sec, for example) and the distance between the source and the detection point.
There are multiple possible models that describe the propagation of a gas emission as a plume through the atmosphere. One well-validated physical model for a plume (Gifford, F. A., 1959. “Statistical properties of a fluctuating plume dispersion model”. Adv. Geophys, 6, 117-137) is to model the plume as a Gaussian distribution in the spatial dimensions transverse to the wind direction. For a ground level source, the concentration c (x, y, z) at a distance x downwind, y crosswind, and at a height z from a gas emission source of strength Q located on the ground is then given by Equation (1):
where ν is the speed of the wind, and the plume dispersion half-widths σy and σz depend on x via functions that are empirically determined for various atmospheric stability conditions.
If we consider the plume center, where y=z=0, the concentration at the center is given by Equation (2):
The dimensions of the Gaussian distribution horizontally and vertically, half-widths σy and σz, increase with increasing distance from the source. The amount they increase can be estimated from measurements of wind speed, solar irradiation, ground albedo, humidity, and terrain and obstacles, all of which influence the turbulent mixing of the atmosphere. However, if one is willing to tolerate somewhat more uncertainty in the distance estimation, the turbulent mixing of the atmosphere can be estimated simply from the wind speed, the time of day, and the degree of cloudiness, all of which are parameters that are available either on the vehicle 24 or from public weather databases in real time. Using these available data, estimates of the Gaussian width parameters can be estimated using the Pasquill-Gifford-Turner turbulence typing scheme (Turner, D. B. (1970). “Workbook of atmospheric dispersion estimates”. US Department of Health, Education, and Welfare, National Center for Air Pollution Control), or modified versions of this scheme.
For a given sensitivity of the gas measurement device, there is a minimum concentration which may be detected. Given a gas emission source of strength greater than or equal to the minimum concentration, the source will be detected if it is closer than an estimated maximum distance Xmax, where this is the distance such that σyσz=Q/(πνc). If the wind is blowing gas directly from the gas emission source to the gas measurement device, the estimated maximum distance Xmax is the distance beyond which the source may be missed. This estimated maximum detection distance may depend upon atmospheric stability conditions as well as wind speed. The formula diverges to infinity when the wind speed is very small, so in some embodiments it may be advisable to set a lower limit (e.g., 0.5 m/s) for this quantity.
The minimum emission rate Qmin is determined by the requirements of the application. For natural gas distribution systems, a minimum leak rate of 0.5 scfh (standard cubic feet per hour) may be used; below this level, the leak may be considered unimportant. Other minimum leak rates (e.g. 0.1 scfh, 1 scfh, or other values within or outside this range) may be used for natural gas or other leak detection applications. The minimum detection limit of the plume Cmin is given either by the gas detection instrument technology itself, or by the spatial variability of methane in the atmosphere when emissions are not present. A typical value for Cmin is 30 ppb (parts-per-billion) above the background level (typically 1,800 ppb). Given these two values for Qmin and Cmin, and by predicting σy and σz given atmospheric measurements (or with specific assumptions about the state of the atmosphere, such as the stability class), one may then determine the estimated maximum detection distance Xmax by determining the value for Xmax that satisfies the following equality, Equation (3):
In some embodiments the relationship between σy and σz and Xmax is provided by a functional relationship, a lookup table, or similar method. Because σy and σz are monotonically increasing functions of Xmax, a unique value can be determined from this process. For example, one useful functional form is a simple power law, where the coefficients a, b, c, and d depend on atmospheric conditions: σy=axb; σz=cxd.
In some embodiments, the concentration C measured close to the ground of a Gaussian plume due to a gas leak source on the ground depends on the rate of emission Q of the source, the distance x between the source and the gas measurement device, and the speed of the wind blowing from the source to the gas measurement device, in accordance with an expression of the form (Equation 4):
The expressions for σy(x) and σz(x) depend on the stability class of the atmosphere at the time of measurement. In some embodiments, the stability class of the atmosphere is inferred from the answers to a set of questions given to the operator, or from instruments of the vehicle, or from data received from public weather databases. As shown in the table of
The actual distance at which a gas emission source may be detected is reduced if there is some variability or uncertainty in the direction of the wind. This is because there is a probability that the wind blows gas in a direction such that it does not intercept the path 74 of the vehicle 24 (
As shown in
The candidate point Q is deemed to be within the boundary of the survey area if the probability of successful detection of a potential gas leak source at the candidate point Q, over the distribution of wind directions, satisfies a probability condition. In some embodiments, the probability condition to be satisfied is an estimated probability of successful detection greater than or equal to a threshold value, typically set at 70%. In general, as the candidate point Q is moved a farther distance from the gas concentration measurement point P, the range of successful angles becomes smaller and the probability of success decreases, reaching a probability threshold at the boundary of the territory deemed to be within the survey area.
The above process is repeated as different measurement points along the path 74 are chosen and different candidate points are evaluated for the probability of successful detection of a potential gas leak source. The cumulative distribution of the wind direction function together with a root finding algorithm are useful for efficiently determining the boundary of the survey area. For example, referring again to
In step 210, at least one processor (e.g. of a client device, server device, or a combination) receives data representative of measured gas concentrations, wind direction measurements, wind speed measurements, and GPS data. In decision block 220, it is determined if a peak in gas concentration is identified. A peak may be identified from a gas concentration measurement above a certain threshold (or within a certain range), or exceeding background levels by a certain amount, which may be predetermined or user-selected. In some embodiments, the gas concentration and GPS data are analyzed using a peak-location method, and then each identified peak is subsequently fit (using linear or nonlinear optimization) for center and width. The functional form used for this fitting step may be a Gaussian pulse, since a Gaussian is commonly the expected functional form taken by gas plumes propagating through the atmosphere.
If a peak in gas concentration is not identified, then the program proceeds to step 250. If a peak in gas concentration is identified, then a peak marker is generated in step 230. The peak marker may be displayed on the map as a user-selectable layer, as previously discussed with reference to
In step 242, wind statistics are calculated from the converted wind values to provide the parameters for the search area indicator. The statistics include a representative wind direction that is preferably a mean, median, or mode of the wind direction measurements. The statistics also include a wind direction variability, such as a standard deviation or variance of the wind direction measurements. In step 243, an angular range of search directions, extending from the location of the gas concentration measurement point where the local enhancement was detected, is calculated according to the variability of the wind direction measurements. In optional step 244, atmospheric conditions data are received. Step 245 is determining a maximum detection distance value representative of the estimated maximum distance from the suspected gas leak source at which a leak can be detected. In some embodiments, the maximum detection distance value is determined according to Equation (3) or Equation (4), and the data representative of wind speed and/or atmospheric stability conditions. Alternatively, the maximum detection distance value may be a predetermined number, a user-defined value, empirically determined from experiments, or a value obtained from a look-up table. In step 246, the search area indicator is generated with the determined parameters, previously discussed with reference to
In step 255, a representative wind direction (e.g., a mean, median, or mode of the wind direction measurements) and a wind direction variability (e.g., variance or standard deviation) are calculated from the wind direction measurements. In step 256, the probability of detection is estimated according to a cumulative probability of wind directions with respect to the subtended angle θ. In step 257, the survey area boundary is calculated with a probability threshold. For example, if the angle θ subtended by the path segment relative to the candidate point encompasses a percentage of possible wind vectors that is greater than equal to a threshold percentage (e.g., 70%,), and if the distance from the candidate point Q to the measurement point P is less than the estimated maximum distance Xmax, then the candidate point Q is deemed to be within the survey area. In decision step 258, it is determined if the survey area boundary function is to continue with the next measurement point. If yes, steps 251-257 are repeated as different measurement points along the path are chosen and different candidate points are evaluated for the probability of successful detection of a potential gas leak source. If not, then the boundary function ends.
2-D Surface Probability Distributions (Heat Maps), Multi-Run Data Collection and Analysis
In some embodiments, gas emissions and/or atmospheric condition data collected and analyzed as described above may be used to generate 2-D surface distributions of a number of parameters, such as 2-D maps of the probability that a gas emission source is located at each location (pixel) along the map, or of the probability that a gas emission source would have been detected had it been present at each location along the map. Such 2-D maps may be updated using data collected on multiple measurement runs performed along the same path or different paths.
Two measurements paths 74, 74′ represent the paths taken by measurement vehicles 24, 24′ on separate measurement runs, which may be performed on different days and under different atmospheric conditions. In some embodiments, separate measurement runs may be performed along a single path under different atmospheric conditions. The general wind direction corresponding to a measurement run performed along measurement path 74 is shown at 406. To reduce display clutter, 2-D surface map 400 is shown in
The initial 2-D prior spatial distribution may be spatially uniform or heterogeneous, and temporally uniform or heterogeneous. For example, a surveyed area distribution may be initialized to zero before any measurements are performed. A source probability distribution may be initialized to zero, or to higher values along known gas distribution infrastructure (e.g. pipeline and gas service) locations as identified from gas company records/plats and lower values elsewhere. The values selected along gas distribution infrastructure may be further selected according to the condition (e.g. age, reliability records/expectations) and expected emission factors for different types of infrastructure. In some embodiments, the distribution may be temporally heterogeneous, to reflect changes in emission rates and/or probabilities with time. For example, gas pipelines may have higher pressures in the winter than the summer, and may have different pressures at different times of the day or the week. Surface permeability may vary with temperature and thus with seasons and the time of day, for example as cracks in asphalt open and close with variations in temperature. Some gas distribution systems use relief valves that release gas at determinable times. And some sources of natural gas resulting from incomplete combustion (e.g. laundromats, restaurants, and buses running on compressed natural gas) have emission rates that vary with time and/or space.
In a step 502, display data is generated for displaying the 2-D prior spatial distribution to a user. Such display data is transmitted to a display device, which displays to the user a graphical representation of the 2-D prior spatial distribution. The graphical representation may be a color-coded or other type of heat-map illustrating the 2-D prior spatial distribution and other geospatially-referenced features, as illustrated for example in
In a step 504, evidence is collected along a 1-D path (or at multiple locations) as described above, and from external sources. For example, atmospheric condition data may be collected from an outside station or service. Collected evidence may include raw measurements, as well as data derived from raw measurements, such as a Boolean flag indicating whether a plume was detected at a given location, and/or the peak size and width of a plume detected at a given location. In some embodiments, examples of collected evidence include one or more of the following: geospatial (e.g. GPS) position and time; primary gas concentration taken at one or more vertical positions with respect to the vehicle; processed gas concentration indicating an observed plume; secondary tracer gas concentration; wind direction and speed; plume location, peak and width; emission rate; estimated distance and/or direction to a source; estimated source size.
In a step 506, a forward probability of detecting evidence given a state on the 2-D surface is determined. In some embodiments, the forward probability may be determined using an atmospheric transport model to transform a real or hypothetical emissions source characterized by a location and flux into observed concentrations at different locations, or into probabilities of being detected by measurements performed along the 1-D path. The model used to determine the forward probability may be a physical (theoretical) and/or empirically-determined model. Such an empirical model may rely on prior experimental measurements. Empirical data (e.g. wind direction and wind speed data measured in real time on the vehicle) may also be used to modify parameters in a theoretical model. The forward probability calculation for a 2-D spatial distribution for one quantity may also be constrained by a previously-determined 2-D spatial distribution for another quantity; for example, a previously-determined 2-D distribution of likely source locations may be used to constrain calculations of a 2-D spatial distribution of source fluxes. In some embodiments, if additional evidence is available, such as estimates of leak size or distance to leak, such evidence can be incorporated into the forward probability calculation.
In some embodiments, multiple forward probabilities may be calculated, and differences between forward probabilities calculated with different models or under different assumptions may be used as a measure of data quality and/or as criteria for data selection. Multiple spatial distributions calculated with different forward likelihood kernels may be used in combination to reveal other information about possible sources, such as the relative likelihood that the source is localized (point-like) or extended spatially, or is of constant or time-varying flux. In some embodiments, a forward probability density may be factorized as a product of quasi-independent functions of single variables, as described below.
In a step 508, a Bayesian update is performed using the computed forward probabilities to generate a 2-D posterior spatial distribution from the 2-D prior spatial distribution as described below. In a step 510, the 2-D posterior spatial distribution is assigned to be the new prior spatial distribution, and the process returns to step 502 and proceeds for one or more subsequence rounds of data display, collection and update.
Suitable Bayesian update methods are described below for a number of exemplary 2-D spatial distributions and associated algorithms. The algorithms described below can be broadly divided into two categories: those that characterize detected leaks, or make inferences about the properties of unknown sources of gas such as their location or flux, based on one or more positive indications that at least one source is present, and those that assess the sensitivity to undetected leaks, or the probability that a source with given properties would have been detected if it had been present, when no positive indications were found or no concentration data is considered at all.
Leak-locating algorithms generally use as input a minimum of one positive indication, while those that assess sensitivity do not require positive detections. A positive indication may be taken to mean that an elevated concentration of the gas, consistent with the mobile system having traversed a plume of the gas of interest, was detected above the ambient background. In some embodiments, whether such detection has occurred is determined using an automated spatial-scale and threshold analysis. Such an analysis may include, but is not limited to, a determination of the spatial extent (width) of the gas plume along the trajectory of the mobile system (see e.g. the different widths illustrated in
In a step 548, a Bayesian update is performed to determine a posterior 2-D spatial distribution of surveyed locations. In particular, a posterior probability of missing detection of a potential gas source situated at a given location is determined according to a product of: i. a prior probability of missing detection of the potential gas source situated at the given location, and ii. a probability of missing detection of the potential gas source situated at the given location during the current measurement run. In a step 550, the posterior 2-D spatial distribution is assigned to be the new prior, and the process above is repeated.
Observations of the same gas source across multiple passes are tied together by the fact that the propagation of gaseous emissions in the atmosphere is governed by atmospheric transport phenomena; i.e., the emissions are carried horizontally by the wind, as well as being dispersed by diffusion and convective processes. Thus, on a trajectory that approaches close to a gas source, the emissions plume may be highly peaked, whereas a track further downwind will likely show a reduced, broader plume, as illustrated in
Combining successive observations is facilitated by encoding the information from each positive indication, and in some cases measurements consistent with no plumes being detected, into a probability distribution describing the relative likelihood for each hypothesis—as parameterized by the source properties we seek to estimate—to have resulted in the observation made. The resulting probability distribution is then modified appropriately by successive observations and Bayesian updating.
In some embodiments, a forward probability distribution is generated using physical model (theoretical) and/or likelihood factorization (empirical) approaches. A physical model as described above may use input from measurements of atmospheric transport quantities on the vehicle to adjust the model as measurements are made. The physical model can use as validation experiments performed as described below in the likelihood factorization approach. In a likelihood factorization approach, measurements of known gas sources under a number of different conditions may be used to deduce the shape of the forward probability distribution for each observable as a function of the source property one seeks to measure, such as its location relative to the observer or its flux. The probability distributions may also be functions of one or more variables related to atmospheric conditions. Optionally, in cases where the amount of forward data is insufficient to precisely determine the functional form of the distribution with respect to a certain parameter, a theoretically-motivated functional form for the dependence on that parameter may be chosen, guided by the available data. The probability distributions may be tuned, and the resulting performance of the algorithm tested, on independent data. One may assign a probability to a given hypothesis to have resulted in a given measurement by taking the product of the probabilities to have seen the particular value measured for each observable described by the empirically-determined probability distributions. Optionally, the PDFs for individual observables may have weights that are functions of the parameters of the transport model or other variables. As one example of likelihood factorization, one may factorize a spatial dependence of a probability distribution as a product of purely-radial function (e.g. an exponential declining with distance from source) and a purely-angular function (e.g. a function having a peak at a representative wind direction angle. As another example of likelihood factorization, a likelihood function may be taken to be a product of a function of plume width and a function of plume shape bumpiness; even if the two functions are not in fact completely independent of each other, using the product of the two may allow simplifying the processing needed to generate an overall forward probability distribution.
In regions where no positive indications are found, it may be desirable to rule out that sources are present. The extent to which this can be accomplished for a given point in space depends on the efficiency with which the mobile system can detect sources, and the amount of exposure the system has to that location as determined by the movement of the atmosphere. The detection efficiency is a function of the downwind distance from the source to the detector, the flux of the source, the degree of atmospheric instability, and the amount of time the gas has propagated since emerging into the atmosphere.
The ability to rule out small leaks is maximal closest to the trajectory of the mobile system, and decreases farther away. Detection sensitivity may be expressed as an average flux upper limit, at a chosen confidence level, that would be obtained for an ensemble of similar collections of observations in the case that no source is actually present. The ingredients for a calculation of such a flux upper limit for a given point in space are the efficiency to detect gas sources as a function source flux, and the exposure of the system to gas emitted at that location. Both the efficiency and the exposure are strong functions of atmospheric stability and wind conditions. However, one can measure both quantities using data collected for known sources, as described above.
In some embodiments, multiple measurement runs performed on the same vehicle path or different vehicle paths may be used generate and/or update a 2-D spatial distribution. In particular, the understanding of a given map of potential leaks can be updated given a 1-D path of observations through the 2-D surface of potential leaks. In some embodiments, the updated likelihood can be calculated from each finite line-segment, so that paths can be added to the calculation without having to recalculate the entire spatial distribution. It may also be desirable that the probabilities be absolute, to facilitate interpreting directly the pixel values themselves.
A Bayesian construct can be used to perform the update as described below with reference to
In some embodiments, each pixel is treated independently of other pixels. In other embodiments, values at one pixel may be used to determine values at adjacent pixels. Each approach is described in further detail below.
This multi-dimensional problem can be simplified significantly by applying each piece of evidence directly and independently at each pixel Axy. In other words, each pixel may have a separate and distinct hypothesis to test: 1) is there a source, or 2) is there no source, at Axy? In some embodiments, the probability of these hypotheses at each pixel may be assumed to be independent of the probabilities at other pixels. Such an assumption means that non-zero probabilities in other pixels do not influence the impact of evidence, and thus the evidence has maximal effect on the probability of a source in this pixel. Such an assumption thus leads to a calculation of a maximum probability of a source in a given pixel, assuming that the only source allowed for each piece of evidence is a source at this pixel. For the calculation of the adjacent pixel for that same piece of evidence, one may assume that the only source in the region is at this new location, and that no source is present at the original pixel. Enforcing independence between nearby pixels leads to a worst-case scenario for the probability of a source located at that pixel—the actual probability of one or more sources located at that location is always lower than or equal to the worst-case value. Because the probabilities generated for each pixel in this manner are maxima, they may be different from actual source probabilities.
In some embodiments, the results from adjacent pixels may be combined by assuming independence between the two pixels as a worst-case scenario, which means that the maximum probability of one or more sources in the combined area is the maximum probability of one or more sources in pixel #1 or pixel #2. For fully independent pixels, one can calculate this combined probability using the probability calculus described below. If the pixels are not independent of each other, as for two adjacent tiny (0.01 m2) pixels, the maximum probability of the combined pixel is simply the maximum of the two pixel probability. Again, OR-ing the two pixels is a worst case scenario, since that always leads to a larger value for the probability.
The inter-pixel interaction question can be stated as follows: if the probability of finding a leak in a given pixel is P1, how does one add the probability from an adjacent pixel P2? Restated, what is the likelihood of finding a source in pixel 1 OR pixel 2? This is equivalent to calculating the likelihood of finding no source in pixel 1 AND pixel 2, and then subtracting that result from unity. The ‘AND’ operation means that the probabilities multiply, so the probability of finding no source in either pixel is:
N12=(1−P1)(1−P2)=1−P1−P2+P1P2 [5a]
The probability of finding a source in either 1 or 2 is:
P12=1−N12=1(1−P1)(1−P2)=P1+P2−P1P2 [5b]
We may generalize these expressions to integration over M pixels:
N1 . . . M=Πk=1M(1−Pk);P1 . . . M=1−N1 . . . M [5c]
Such a method leads to pools of near unity maximum probability after the accumulation of identical T (True) evidence at the same location and wind conditions. The pools are approximately the size of the back-propagated plume. Note that even in this situation, every T has one (and likely many more) adjacent F (False) evidence, which will keep the pool from spreading too far. Such a pool does not mean that there are multiple sources. Such a method determines the maximum probability of finding at least one source within given contiguous area, and the resulting maps should be interpreted using the calculus of probability described above, i.e., as identifying the maximum probability of at least one source in the given region, and not by adding probabilities of neighboring pixels directly.
A 2-D spatial distribution generated by considering inter-pixel interactions as described above may be used in both characterization and sensitivity methods. In a characterization example, inter-pixel interactions may be used to determine the maximum probability of a source of a given size at a given location. Such a method may use both True and False evidence collected on the 1-D path. A cleared-area map may be generated by setting a threshold value for the worst-case probability of a source: such a map identifies the areas where the worst-case probability of a source is below the threshold. As noted above, combining pixels into larger areas using the probability calculus described above leads to a value which is a maximum probability of a source located in a given region.
In a sensitivity example, inter-pixel interactions may be used to determine the areas that have been surveyed for sources of a given size. Such a method may apply False evidence for all points on the 1-D measurement path, even if some evidence is actually true. The resulting probability represents the worst case scenario for not detecting an actual source of a given size at a given location. In other words, a value of 0.1 means that a source located here would be detected at least 9 out of 10 times. Combining pixels may be accomplished as described above. Expressing this result as a ratio of the prior allows mapping areas with substantially improved odds of detecting a leak.
Even if the quantity calculated is a maximum probability of a source, the calculation provides localization information. Non-detection events (i.e., F) lead to localization, because they reduce the probability of finding sources in the pixels that contribute to the event via the action of atmospheric transport. This formalism is especially useful in determining where no leaks are present (cleared areas) in a quantitative fashion—reduction of the source probabilities from the prior is accomplished via the accumulation of false plume readings. Sufficient passes of clean (F) readings with a well-defined wind transport allow reducing the source presence probabilities below a level corresponding to having surveyed and cleared an area.
An exemplary Bayesian update process may be better understood by considering the determination of the posterior probability that at least one source of gas with flux f is present in pixel Axy, given an initial probability map of leaks (Pxy) and given evidence of plume identification (either T or F).
Using Bayes' theorem, we may write the posterior probability in the following manner:
where the left-hand term p(Hxy|Ej)≡ρ′xy is the posterior probability of the hypothesis, Hxy, that a source with flux greater than f located in the pixel at (x,y), ρxy is the prior probability, p(Ej) is the probability of the evidence Ej given all possible hypotheses, and p(Ej|Hxy) is the modified probability of observing Ej given Hxy. In this single pixel formalism, there are just two hypotheses to test at each pixel; i.e., whether or not there is a source at this location.
To determine p(Ej) and p(Ej|Hxy), we use a forward likelihood kernel to calculate the likelihood of observing evidence Ej given wind transport function θj. This probability kernel Kxyj quantifies the likelihood of measuring a plume at location sj given wind transport θj and a source at location (x,y).
The four probabilities p(Ej|Hxy) are:
P(Tj|Sxy);p(Tj|
These probabilities depend on distance between the pixel and the evidence location, the direction relative to the possible wind directions, and the atmospheric stability class, and are captured in K. In some embodiments, K behaves such that p(Tj|Sxy)≧p(Tj|
Similarly, map 610 is bounded by a U-shaped measurement path 612, and plume detection Boolean values at each location are shown on the outside of path 612. A matrix 604 illustrates the treatment of the corner pixels, for which two T/F values are measured. The T and F evidence have been distributed consistently with map 600, but note that we took each T in map 600 and turned it into a T and an F in map 610. We could also have turned each T into two Ts with the same ratio between the probabilities, but that would not have highlighted the localization capability as clearly. Each individual T now applies to half the area, and thus we use p(Tj|Sxy)=18p(Tj|
Multiple Wind Directions
In the example illustrated in
Consider the notation a to refer to a range of angles Δα=2π/N, where N is the number of angular bins. Then the probability corresponding to a can we written as
where the probability of there being no source is ηxy=1−Σρxyα. For each step, the prior probability is distributed over the N possible angle bins ρxyα=ρxy/N. The probability can be distributed evenly, which assumes no knowledge of the wind direction, or according to the distribution of measured wind directions. Distributing the probability according to the distribution of measured wind directions means that wind angle enters into the picture in two ways: both in the distribution of the prior among the angular bins, and in the probability kernel that determines the effect of the evidence for the different wind angles. Of all these possibilities, the angles of interest are those subtended by the vectors connecting the measurement segment and the pixel Axy. The evidence does not affect any of the other hypotheses, so all of their probabilities remain the same. Thus, T evidence will drive the probability toward 1 for the bin connecting the evidence to the pixel, while other pixels will be driven to zero (as will ηxy). Conversely, F evidence will drive the bin connecting the evidence to the pixel toward zero and all the other bins toward 1. The other angular bins will also be driven toward 1, which means that to drive the overall probably quickly toward zero, it is necessary to drive a path that subtends all the angles of the wind distribution. For each new step, the new wind field distribution is applied while maintaining the angular structure caused by earlier evidence as, for example, by applying the ratio mask
This is the situation for an essentially frozen wind field, which is true for single transects in the vicinity of a pixel. For a wind field that is completely randomized from step to step on the path s, one could completely redistribute the probability among the different angular bins according to the new wind distribution, without preserving the structure created by earlier measurements. This tends to reduce the effect of F evidence, meaning that areas are cleared more slowly. A compromise between a completely frozen and completely random wind field is a slowly healing distribution that returns to a flat distribution. Such healing may be performed by angular diffusion, in which mixing between nearby angles for large probability gradients occurs more quickly than when the gradients are small. Such healing may also be performed by redistributing a portion of the angular probability evenly among all the angular bins, for example with an exponential time constant of about 0.1-1 minutes. Such healing would allow the static wind field approximation to be valid within a given transect that takes a few seconds, but later transects would start from scratch as far as the wind field is concerned.
General Discussion
The concept of expanding measurements collected in one dimension to retrieve 2-D information is a form of tomography, in which the transformation of the 2-D information into 1-D measurements occurs via an ever-changing atmospheric transport model. Consider a data stream comprising a position of a mobile platform as a function of time, {right arrow over (x)}(t), the concentration of gas, c(t), the wind speed and direction {right arrow over (u)}(t), and auxilliary information, e.g., atmospheric stability, photographic imagery, etc., which we shall denote collectively S({right arrow over (x)}, t). From our measurements, we would like to deduce unknown properties of any gas sources present. In particular, we would like to assess the conditional probability of the parameters describing a hypothesis given a set of observations. We can do this by choosing a functional form for hypotheses with parameters corresponding to the properties we are interested in, and then assessing the relative likelihood of each hypothesis in light of a set of observations in the context of a statistical model.
Depending on the properties of the ground (such as permeability), gas leaks originating from an underground pipe can emerge at a localized point such as hole in the pavement, or can diffuse out of the ground over an extended area. Furthermore, the total flux emerging can vary in time with changes in surface permeability. Thus, we can start with a general gas source hypothesis that has an arbitrary distribution in space and time. In practice, we would not expect to have a hope of resolving a spatial extent or time dependence without an enormous number of observations, so a more practical hypothesis would be a steady point source described by a location {right arrow over (r)} and flux, Φ.
In order to compare the relative veracity of different hypotheses, we would like to know the likelihood that a given hypothesis H is true given a collection of observations O. The i'th observation, {right arrow over (O)}i, is a vector since it may involve measuring of a number of observables. In addition to the hypotheses H between which we wish to distinguish, the conditions (such as the atmospheric stability, wind conditions, path of the vehicle, etc.) under which this observation is made may be represented by parameter vector {right arrow over (C)}i.
The likelihood of hypothesis H given the observation {right arrow over (O)}i is the conditional probability density of the observation, regarded as a function of the hypothesis, i.e.,
L(H;{right arrow over (O)}i,{right arrow over (C)}i)=P({right arrow over (O)}i|H,{right arrow over (C)}i) [9]
If the observations are assumed to be independent, the likelihood of a given hypothesis is the product of the likelihoods for each observation:
If we already have some information that confers a relative preference to different hypotheses in the form of a prior probability density P(H), we can incorporate this knowledge according to Bayes' theorem to give a posterior probability density after the observations as:
In order to construct a probability density function P({right arrow over (O)}i|H,{right arrow over (C)}i) for the observation {right arrow over (O)}i, we specify the observables, which are its components Oij. Strictly, this may be a joint probability density, but it may be possible to choose the observables so that the probability density function factorizes at least approximately into a product of independent functions.
An appropriate model in the context of deducing gas source properties is the Pasquill-Gifford Gaussian plume model, described above. In this model, gas from a point source is assumed to propagate downwind, dispersing in the horizontal and vertical directions (y and z, respectively) according to a two-dimensional Gaussian distribution. The development of the horizontal and vertical extents (σy and σz) of the plume as a function of time is governed by the wind speed and the degree of atmospheric turbulence, classified from “A” to “F” in order of increasing stability.
Let us define a track as the path of our mobile gas detection system along with the quantities measured as a function of time. In the context of the plume model, we generally gain the most information about a gas source location from the portion(s) of the track intersecting a plume. One step in the data analysis is to find and isolate such segments of the track. Identifying such segments can be accomplished though spatial-scale and threshold analysis. The spatial-scale analysis converts {right arrow over (x)}(t) and {right arrow over (c)}(t) into {right arrow over (c)}(x). Let us define a positive indication as having occurred when the output of the threshold analysis shows that the measured concentration has risen above a threshold cT and has remained so for spatial extent w which satisfies wmin<wi<wmax. Here, wmin and wmax are chosen to minimize false indications arising from statistical fluctuations at scales smaller than wmin, or from changes in the background gas concentration occurring on scales greater than wmax. In one particular implementation, the threshold analysis may be accomplished using a Gaussian kernel analysis yielding the position {right arrow over (x)}0 where the maximum concentration was observed, an amplitude a, and a width w of the kernel that best match the recorded concentration curve. The amplitude may be taken to be the background-subtracted maximum detected gas concentration.
To determine the location of a potential gas emission source, consider the simplifying assumption that the source flux is constant and is emerging from a single point. The hypothesis can then be described as:
H=[{right arrow over (r)},Φ] [13]
We would like to identify observables which we believe are useful for deducing source location based on the output of a spatial-scale and threshold analysis. In particular, we may be able to restrict the position of the unknown source using our measurements of the location of the maximum concentration {right arrow over (x)}0, the time at which the maximum concentration was observed, t0, the wind speed and direction as recorded up to the observation of the maximum, {right arrow over (u)}(t) and the observed atmospheric stability class, S.
Three parameters of particular interest are an impact parameter, a plume width, and an observed flux.
Let us define a line {right arrow over (l)}(t), that traces the path of the wind backward in time from x0:
For a hypothetical source at position {right arrow over (r)}0, we define th as the point that minimizes the distance between {right arrow over (l)}(t) and {right arrow over (r)}0. Let b be that minimum distance, and let l0 be the distance along {right arrow over (l)}(t) between {right arrow over (x)}0 and {right arrow over (l)}(th). Here b is analogous to an impact parameter, and both it and l0 may be calculated from the position of the indication and for each possible source location. If we characterize the distribution of b and l0 for a collection of indications from known sources under different conditions, this yields P(b,l0|{right arrow over (r)},Φ,{right arrow over (C)}), whose marginals may then be used as a component in the likelihood for source location. Such an approach is likely to be most useful when the wind speed is strong enough, compared to the degree of turbulent diffusion, that advection is the dominant mechanism for transporting the gas from the source to the detector.
The width of the observed gas concentration peak, w, is another useful parameter for localizing a source. More specifically, if θ is the angle between the average wind direction and the direction of travel, then
w′=w sin θ [15]
reflects the actual width of the plume at {right arrow over (x)}0. If the source is close to the point of observation, then w′ is smaller compared to cases where the sources is more distant.
The horizontal and vertical development of the plume is governed by the atmospheric stability class, the wind speed and the variability of the wind direction. We can construct a probability density of the form P(w′|{right arrow over (r)},{right arrow over (C)}), where within {right arrow over (C)} are included l0, the downwind distance traveled by the plume, the wind statistics {right arrow over (u)} and σu during the time of travel th<t<t0 and the effects of spreading due to the atmospheric stability class.
The total flux, φ, of gas observed along the path of the mobile platform may be estimated to within a factor as:
φ˜awū sin θ [16]
where ū is the mean wind speed during the observation. For a given set of atmospheric conditions, we would expect φ to decrease as we move farther away from a given source because the plume has had more time to diffuse in the y and z directions. However, the observed flux is also a function of the source flux, Φ. Since a given observed flux could have originated from a smaller source located near the measurement path or a large one farther away, we can write a probability density function (PDF) of the form
P(φ,w′|l0,t0−th)=∫P(φ,w′|Φ,l0,t0−th)P(Φ)dΦ [17]
In some embodiments, the probability density functions describing the functions Pj of Eq. [12] can be determined empirically by experiments conducted with known sources with known properties. The functions Pj may be functions of many variables. The dependence on some of those variables may be difficult to determine empirically, since collecting enough data when one cannot control all of the parameters is sometimes a challenge. In such cases it might suffice to assert a functional form for the dependence on a particular parameter on plausible theoretical grounds.
Given the complexity of atmospheric transport phenomena, especially for plumes propagating near the ground on short time and distance scales, some observables are likely to provide more information or be more powerful for determining the unknown source properties. In some embodiments, the relative importance of one observable compared to another may be changed as a function of weather conditions or other circumstances. Furthermore, some observations might be of higher quality or provide more information than others. The structure of the probability density functions themselves may account for different informational content of different observations. In some embodiments, the relative importance of each observable for the ith observation is weighted as follows.
In the normal application of Bayes' theorem, if we regard the observables of {right arrow over (O)}i of the ith observation as being independent, the change in our state of knowledge as a result of the i'th observation is
P(H|{right arrow over (O)}i, . . . ,{right arrow over (O)}1,Ci, . . . ,C1)∝P(Oi1, . . . ,Oin|H,Ci)P(H|{right arrow over (O)}i-1, . . . ,{right arrow over (O)}1,Ci-1, . . . ,C1)∝P(Oi1|H,Ci) . . . P(Oin|H,Ci)P(H|{right arrow over (O)}i-1, . . . ,{right arrow over (O)}1,Ci-1, . . . ,C1) [18]
We may empirically introduce weights w1, . . . , wn (which may depend on Ci) to emphasize or deemphasize the effects of the individual factors, so that we consider instead a likelihood of the form
P(Oi1|H,Ciw
If we work in terms of the log likelihoods, these weights act as coefficients of the linear combination of the log likelihoods of the individual observables within the observation. It is similarly possible to introduce weighting factors to change the relative importance of the observations as well as of the observables within an observation.
In some embodiments, one evaluated quantity of particular interest is the degree of belief in a given hypothesis with respect to another. Suppose we have collected a number of observations and have computed L(O|H) using a likelihood function suitable for localizing gas sources. Let us further suppose that the joint likelihood indicates two equally likely locations for the source of the leak. One of the locations is in a corn field and the other is near the road where there are underground gas distribution lines. Even though the determined likelihood of both locations may be equal, our degree of belief is higher for the hypothesis that the leak is located near the gas distribution line.
Bayes' theorem allows us calculate such a degree of belief by combining the likelihoods generated using the observations with any prior information we already have about possible or probable leaks. For example, we can use a map of the gas distribution system, and if we are willing to make the assumption that leaks from the system do not travel far from the system's pipes before emerging above ground, we could represent this prior knowledge as a function P(
The exemplary systems and methods described above allow a surveyor to locate potential gas leak sources efficiently and effectively in highly populated areas, and allow the use of data from multiple measurement runs to generate a 2-D spatial distribution (map) of desired parameter values.
It will be clear to one skilled in the art that the above embodiments may be altered in many ways without departing from the scope of the invention. For example, gas leaks may include, but are not limited to: leaks from gas pipes or transportation systems (e.g., natural gas leaks), leaks from gas processing or handling facilities, and emissions from gas sources into the environment (e.g., pollution, gas emission from landfills, etc.). Gas concentration measurements are preferably performed rapidly (e.g., at a rate of 0.2 Hz or greater, more preferably 1 Hz or greater). This enables the concept of driving a vehicle at normal surface street speeds (e.g., 35 miles per hour) while accumulating useful gas concentration and wind measurement data. However, embodiments of the invention do not depend critically on the gas detection technology employed. Any gas concentration measurement technique capable of providing gas concentration measurements can be employed in some embodiments.
Although the gas concentration measurements are preferably performed while the gas measurement device is moving, at least some gas concentration measurements can be performed while the gas concentration measurement device is stationary. Such stationary gas concentration measurements may be useful for checking background gas concentrations, for example. While real-time measurements are preferred, post analysis of more sparsely sampled data, e.g., via vacuum flask sampling and later analysis via gas chromatography or other methods, may be used in some embodiments. Optionally, measurements can be made on different sides of the road or in different lanes to provide more precise localization of the leak source. Optionally, the present approaches can be used in conjunction with other conventional methods, such as visual inspection and/or measurements with handheld meters to detect emitted constituents, to further refine the results. Optionally, measurements can be made at reduced speed, or with the vehicle parked near the source, to provide additional information on location and/or source attribution.
Optionally, the system can include a source of atmospheric meteorological information, especially wind direction, but also wind speed or atmospheric stability conditions, either on-board the vehicle or at a nearby location. The stability of the atmospheric conditions can be estimated simply from the wind speed, the time of day, and the degree of cloudiness, all of which are parameters that are available either on the vehicle or from public weather databases. Optionally, the computer system can include an on-board video camera and logging system that can be used to reject potential sources on the basis of the local imagery collected along with the gas concentration and wind data. For example, a measured emissions spike could be discounted if a vehicle powered by natural gas passed nearby during the measurements. Optionally, repeated measurements of a single location can be made to provide further confirmation (or rejection) of potential leaks. Accordingly, the scope of the invention should be determined by the following claims and their legal equivalents.
It will be clear to one skilled in the art that the above embodiments may be altered in many ways without departing from the scope of the invention. Accordingly, the scope of the invention should be determined by the following claims and their legal equivalents.
Claims
1. A method comprising employing at least one processor to:
- identify a first gas emission plume event according to a first set of gas emission data resulting from a first mobile measurement run performed by a mobile measurement device along a first measurement path, the first set of gas emission data reflecting a first set of gas concentration data acquired during the first mobile measurement run and a first set of associated atmospheric condition data characterizing the first mobile measurement run;
- generate a prior 2-D surface map of gas emission source probabilities according to the first set of gas emission data;
- receive a second set of gas emission data resulting from a second mobile measurement run, the second set of gas emission data reflecting a second set of gas concentration data acquired during the second mobile measurement run; and
- update the prior 2-D surface map to generate a posterior 2-D surface map of gas emission source probabilities according to the second set of gas emission data, wherein generating the posterior 2-D surface map comprises determining an updated probability of a gas emission source being present at a given location according to a product of a prior probability of the gas emission source being present at the given location and a probability of observing the second set of gas emission data given the gas emission source being present at the given location.
2. The method of claim 1, wherein identifying the first gas emission plume event comprises identifying a concentration peak amplitude and associated spatial extent along the first measurement path.
3. The method of claim 1, wherein the prior 2-D surface map is generated according to an atmospheric transport model employing the first set of associated atmospheric condition data.
4. The method of claim 1, further comprising employing the at least one processor to generate display data for displaying the posterior 2-D surface map to a user.
5. The method of claim 4, wherein the display data defines a color-coded heat map to be displayed.
6. The method of claim 1, wherein at least one of the prior 2-D surface map and the posterior 2-D surface map is generated according to a set of geospatially-referenced locations of underground gas transmission pipelines representing potential gas emission sources.
7. The method of claim 6, wherein at least one of the prior 2-D surface map and the posterior 2-D surface map is generated according to pipeline condition data characterizing a condition of the underground gas transmission pipelines.
8. The method of claim 6, further comprising employing the at least one processor to generate display data for displaying to a user the posterior 2-D surface map overlaid on a map of the underground gas transmission pipelines.
9. The method of claim 1, wherein the first set of associated atmospheric condition comprises a plurality of wind speed and wind direction values acquired along the first measurement path.
10. The method of claim 1, wherein the second measurement run is performed along a second measurement path different from the first measurement path.
11. A non-transitory computer-readable medium encoding instructions which, when executed by a computer system comprising at least one processor, cause the at least one processor to:
- identify a first gas emission plume event according to a first set of gas emission data resulting from a first mobile measurement run performed by a mobile measurement device along a first measurement path, the first set of gas emission data reflecting a first set of gas concentration data acquired during the first mobile measurement run and a first set of associated atmospheric condition data characterizing the first mobile measurement run;
- generate a prior 2-D surface map of gas emission source probabilities according to the first set of gas emission data;
- receive a second set of gas emission data resulting from a second mobile measurement run, the second set of gas emission data reflecting a second set of gas concentration data acquired during the second mobile measurement run; and
- update the prior 2-D surface map to generate a posterior 2-D surface map of gas emission source probabilities according to the second set of gas emission data, wherein generating the posterior 2-D surface map comprises determining an updated probability of a gas emission source being present at a given location according to a product of a prior probability of the gas emission source being present at the given location and a probability of observing the second set of gas emission data given the gas emission source being present at the given location.
12. A computer system comprising at least one processor configured to:
- identify a first gas emission plume event according to a first set of gas emission data resulting from a first mobile measurement run performed by a mobile measurement device along a first measurement path, the first set of gas emission data reflecting a first set of gas concentration data acquired during the first mobile measurement run and a first set of associated atmospheric condition data characterizing the first mobile measurement run;
- generate a prior 2-D surface map of gas emission source probabilities according to the first set of gas emission data;
- receive a second set of gas emission data resulting from a second mobile measurement run, the second set of gas emission data reflecting a second set of gas concentration data acquired during the second mobile measurement run; and
- update the prior 2-D surface map to generate a posterior 2-D surface map of gas emission source probabilities according to the second set of gas emission data, wherein generating the posterior 2-D surface map comprises determining an updated probability of a gas emission source being present at a given location according to a product of a prior probability of the gas emission source being present at the given location and a probability of observing the second set of gas emission data given the gas emission source being present at the given location.
13. A non-transitory computer-readable medium encoding instructions which, when executed by a computer system comprising at least one processor, cause the at least one processor to:
- receive a prior 2-D surface map of gas emission source probabilities;
- identify a first gas emission plume event according to a first set of gas emission data resulting from a first mobile measurement run performed by a mobile measurement device along a first measurement path, the first set of gas emission data reflecting a first set of gas concentration data acquired during the first mobile measurement run and a first set of associated atmospheric condition data characterizing the first mobile measurement run; and
- selectively employ data characterizing the identified first gas emission plume event to update the prior 2-D surface map to generate a posterior 2-D surface map of gas emission source probabilities by determining an updated probability of a gas emission source being present at a given location according to a product of a prior probability of the gas emission source being present at the given location and a probability of observing the data characterizing the identified first gas emission plume event given the gas emission source being present at the given location.
14. The computer-readable medium of claim 11, wherein identifying the first gas emission plume event comprises identifying a concentration peak amplitude and associated spatial extent along the first measurement path.
15. The computer-readable medium of claim 11, wherein the prior 2-D surface map is generated according to an atmospheric transport model employing the first set of associated atmospheric condition data.
16. The computer-readable medium of claim 11, wherein the instructions are further configured to cause the at least one processor to generate display data for displaying the posterior 2-D surface map to a user.
17. The computer-readable medium of claim 16, wherein the display data defines a color-coded heat map to be displayed.
18. The computer-readable medium of claim 11, wherein at least one of the prior 2-D surface map and the posterior 2-D surface map is generated according to a set of geospatially-referenced locations of underground gas transmission pipelines representing potential gas emission sources.
19. The computer-readable medium of claim 18, wherein at least one of the prior 2-D surface map and the posterior 2-D surface map is generated according to pipeline condition data characterizing a condition of the underground gas transmission pipelines.
20. The computer-readable medium of claim 18, wherein the instructions are further configured to cause the at least one processor to generate display data for displaying to a user the posterior 2-D surface map overlaid on a map of the underground gas transmission pipelines.
21. The computer-readable medium of claim 11, wherein the first set of associated atmospheric condition comprises a plurality of wind speed and wind direction values acquired along the first measurement path.
22. The computer-readable medium of claim 11, wherein the second measurement run is performed along a second measurement path different from the first measurement path.
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Type: Grant
Filed: Dec 23, 2013
Date of Patent: Mar 21, 2017
Assignee: Picarro, Inc. (Santa Clara, CA)
Inventors: David Steele (San Francisco, CA), Sze M. Tan (Sunnyvale, CA), Chris W. Rella (Sunnyvale, CA)
Primary Examiner: Roy Y Yi
Application Number: 14/139,348
International Classification: G01N 31/00 (20060101); G01N 33/00 (20060101);